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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >A grinding force prediction model for SiCp/Al composite based on single-abrasive-grain grinding
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A grinding force prediction model for SiCp/Al composite based on single-abrasive-grain grinding

机译:基于单磨粒磨削的SICP / Al复合材料研磨力预测模型

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摘要

Grinding is the main processing method for particle-reinforced composites, and grinding force prediction models are very important for research on removal mechanisms. In this study, single-abrasive-grain grinding experiments on SiCp/Al composites were conducted to determine the grinding forces at different grinding process parameters. In addition, a prediction model for the single-abrasive-grain grinding force was established to study the influence of the grinding process parameters and grinding grain angle on the grinding force of SiCp/Al composite. Moreover, multi-abrasive-grain grinding experiments were conducted at different grinding process parameters, which resulted in different grinding forces. The support vector machine (SVM) prediction method based on particle swarm optimisation (PSO) was used to establish a prediction model for the multi-abrasive-grain grinding force; the single-abrasive-grain grinding forces at different grinding grain angles were the input, and the average experimental grain grinding force was the output. The results show that the error between the predicted and experimental grinding forces is below 12%. Furthermore, the grinding force decreases with increasing wheel speed and increases with increasing feed velocity and grinding depth. The PSO-SVM algorithm-based grinding force prediction model can accurately predict the grinding force of SiCp/Al composite and provides theoretical support for improved surface quality.
机译:研磨是用于颗粒增强复合材料的主要加工方法,并且研磨力预测模型对于对去除机制的研究非常重要。在该研究中,进行了在SICP / Al复合材料上进行单磨粒磨削实验以确定不同研磨过程参数的研磨力。另外,建立了一种用于单磨粒磨削力的预测模型,以研究研磨工艺参数和研磨粒角对SICP / Al复合材料的研磨力的影响。此外,在不同的研磨工艺参数下进行多磨粒磨削实验,从而导致不同的研磨力。基于粒子群优化(PSO)的支持向量机(SVM)预测方法用于建立多磨粒磨削力的预测模型;在不同研磨粒角的单磨粒磨削力是输入,并且平均实验晶粒研磨力是输出。结果表明,预测和实验研磨力之间的误差低于12%。此外,磨削力随着车轮速度的增加而降低,随着饲料速度和研磨深度的增加而增加。基于PSO-SVM算法的研磨力预测模型可以精确地预测SICP / AL复合材料的研磨力,并为改善的表面质量提供理论支持。

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